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Concentration-Resilient Mixture Preparation with Digital Microfluidic Lab-on-Chip

机译:浓度 - 弹性混合物用数字微流体实验室制备芯片

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摘要

Sample preparation plays a crucial role in almost all biochemical applications, since a predominant portion of biochemical analysis time is associated with sample collection, transportation, and preparation. Many sample-preparation algorithms are proposed in the literature that are suitable for execution on programmable digital microfluidic (DMF) platforms. In most of the existing DMF-based sample-preparation algorithms, a fixed target ratio is provided as input, and the corresponding mixing tree is generated as output. However, in many biochemical applications, target mixtures with exact component proportions may not be needed. From a biochemical perspective, it may be sufficient to prepare a mixture in which the input reagents may lie within a range of concentration factors. The choice of a particular valid ratio, however, strongly impacts solution-preparation cost and time. To address this problem, we propose a concentration-resilient ratioselection method from the input ratio space so that the reactant cost is minimized. We propose an integer linear programming-based method that terminates very fast while producing the optimum solution, considering both uniform and weighted cost of reagents. Experimental results reveal that the proposed method can be used conveniently in tandem with several existing sample-preparation algorithms for improving their performance.
机译:样品制备在几乎所有生物化学应用中起着至关重要的作用,因为生物化学分析时间的主要部分与样品收集,运输和制备相关。在文献中提出了许多样品制备算法,其适用于可编程数字微流体(DMF)平台上的执行。在大多数现有的基于DMF的样品制备算法中,提供固定目标比例作为输入提供,并且将相应的混合树作为输出产生。然而,在许多生物化学应用中,可能不需要具有精确组分比例的靶混合物。从生物化学的角度来看,制备一种混合物可以足以使输入试剂可以位于浓缩因子范围内。然而,特定的有效比率的选择强烈影响解决方案 - 准备成本和时间。为了解决这个问题,我们提出了一种来自输入比空间的浓度 - 弹性度量方法,使得反应性成本最小化。我们提出了一种基于整数的线性编程的方法,其终止于产生最佳解决方案,考虑到试剂的均匀和加权成本。实验结果表明,该方法可以方便地使用几种现有的样品制备算法,用于提高其性能。

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